Department of Radiation Oncology, School of Medicine, Virginia Commonwealth University, Richmond, Virginia 23298, USA.
Med Phys. 2011 Jan;38(1):474-86. doi: 10.1118/1.3528220.
To generalize and experimentally validate a novel algorithm for reconstructing the 3D pose (position and orientation) of implanted brachytherapy seeds from a set of a few measured 2D cone-beam CT (CBCT) x-ray projections.
The iterative forward projection matching (IFPM) algorithm was generalized to reconstruct the 3D pose, as well as the centroid, of brachytherapy seeds from three to ten measured 2D projections. The gIFPM algorithm finds the set of seed poses that minimizes the sum-of-squared-difference of the pixel-by-pixel intensities between computed and measured autosegmented radiographic projections of the implant. Numerical simulations of clinically realistic brachytherapy seed configurations were performed to demonstrate the proof of principle. An in-house machined brachytherapy phantom, which supports precise specification of seed position and orientation at known values for simulated implant geometries, was used to experimentally validate this algorithm. The phantom was scanned on an ACUITY CBCT digital simulator over a full 660 sinogram projections. Three to ten x-ray images were selected from the full set of CBCT sinogram projections and postprocessed to create binary seed-only images.
In the numerical simulations, seed reconstruction position and orientation errors were approximately 0.6 mm and 5 degrees, respectively. The physical phantom measurements demonstrated an absolute positional accuracy of (0.78 +/- 0.57) mm or less. The theta and phi angle errors were found to be (5.7 +/- 4.9) degrees and (6.0 +/- 4.1) degrees, respectively, or less when using three projections; with six projections, results were slightly better. The mean registration error was better than 1 mm/6 degrees compared to the measured seed projections. Each test trial converged in 10-20 iterations with computation time of 12-18 min/iteration on a 1 GHz processor.
This work describes a novel, accurate, and completely automatic method for reconstructing seed orientations, as well as centroids, from a small number of radiographic projections, in support of intraoperative planning and adaptive replanning. Unlike standard back-projection methods, gIFPM avoids the need to match corresponding seed images on the projections. This algorithm also successfully reconstructs overlapping clustered and highly migrated seeds in the implant. The accuracy of better than 1 mm and 6 degrees demonstrates that gIFPM has the potential to support 2D Task Group 43 calculations in clinical practice.
从少量测量的二维锥形束 CT(CBCT)X 射线投影中,概括并实验验证一种新的算法,以重建植入近距离放射治疗种子的三维位置(位置和方向)。
迭代正向投影匹配(IFPM)算法被推广到从三到十个测量的二维投影中重建近距离放射治疗种子的 3D 位置和质心。gIFPM 算法通过计算和测量自动分割射线照相投影之间的像素强度的平方差之和来找到种子位置的最小集合。对临床实际近距离放射治疗种子配置进行了数值模拟,以证明原理证明。使用内部制造的近距离放射治疗体模,该体模支持在已知模拟植入物几何形状的值下精确指定种子位置和方向,用于实验验证该算法。该体模在 ACUITY CBCT 数字模拟器上进行了扫描,共扫描了 660 个完整的扇形束投影。从完整的 CBCT 扇形束投影中选择三个到十个 X 射线图像,并进行后处理以创建仅包含种子的二进制图像。
在数值模拟中,种子重建位置和方向误差分别约为 0.6 毫米和 5 度。物理体模测量结果表明,绝对位置精度为(0.78 +/- 0.57)毫米或更小。当使用三个投影时,theta 和 phi 角误差分别为(5.7 +/- 4.9)度和(6.0 +/- 4.1)度或更小;使用六个投影时,结果略好。与测量的种子投影相比,平均注册误差优于 1 毫米/6 度。每个测试试验在 10-20 次迭代中收敛,在 1 GHz 处理器上每次迭代的计算时间为 12-18 分钟。
这项工作描述了一种新颖、准确且完全自动的方法,用于从少量射线照相投影中重建种子方向以及质心,以支持术中计划和自适应重新计划。与标准反向投影方法不同,gIFPM 避免了在投影上匹配对应种子图像的需要。该算法还成功地重建了植入物中重叠的集群和高度迁移的种子。精度优于 1 毫米和 6 度表明,gIFPM 有可能支持临床实践中的 2D Task Group 43 计算。